Automated news ranking and recommendation system

a news recommendation and automatic technology, applied in the field of computer systems, can solve the problems of materially affecting the business operation of the business, affecting the accuracy of news alerts, etc., and achieve the effect of reducing time, reducing noise, and reducing the number of news alerts

Active Publication Date: 2022-05-17
S&P GLOBAL INC
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Benefits of technology

[0012]The illustrative embodiments described herein provide a methodology that uses a combination of entity-based news tracking, clustering, relevancy, and ranking models to detect news events, filter out noise, cluster the same event into each of the respective clusters, assign relevance of news event to main entity, and rank each news event cluster based on the importance of the event to the overall company. The ranked list of events are presented to the user in this curated manner which allows analysts to focus on key news relevant to their analysis and thus spend less time filtering through noise and reviewing redundant events. New business requirements can be easily added by defining new subscriptions with any customized entities. Processes within subscriptions can be fully paralleled.
[0013]The illustrative embodiments described herein provide (1) a full-stack systematic methodology of information retrieval and relevancy to automatically distinguish financially material news events, and (2) a generic, scalable, and extendable news recommendation framework that can be easily adopted by most financial companies. The news recommendation system of the illustrative embodiments is able to detect emerging risks to company's operations faster and more efficiently than current analyst methods.
[0014]The illustrative embodiments described herein provide a news recommendation system that offers several advantages over prior art systems that allow financial analysts to work more effectively and efficiently. The news recommendation system described herein presents a full stack financial news recommendation system from data storage to user interface that can be easily deployed at any financial company. With a subscription-based pipeline, the system can be conveniently parallelized and extended for new business monitoring requirements. By using a series of clustering and relevancy models, the system is able to recommend news events that have a direct relevancy to the final outcome of analysis, e.g., credit rating, at a financial firm.

Problems solved by technology

For example, a company could announce an acquisition or a disruption to their supply chain that would materially impact its business operations.
Thus, the news alerts analysts receive contain much noise.
The lack of comprehensive coverage means the attention to certain critical news events can be delayed or missed altogether.
Manual review of relevant and important news events is time-consuming and error-prone.
Currently, analysts receive news alerts through manually created news alert subscriptions that are often noisy and difficult to manage.
The manual review process is time-consuming and error-prone.
However, related knowledge bases do not always exist and are highly expensive to build.
However, CF-based methods are not feasible in task-oriented news recommendation systems, especially in the finance industry.
Recommending news similar to the ones in analysts' history may bias the system towards frequent events.
However, financially interesting business events may be rare, such as bankruptcy and acquisition.
In this case, diverse “user interests” generate highly sparse user-news interaction, which discounts the performance of the CF-based system.

Method used

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Embodiment Construction

[0029]The illustrative embodiments recognize and take into account one or more different considerations. For example, the illustrative embodiments recognize and take into account that it is desirable to build a news recommendation system for financial analysis, which can suggest important news articles that are relevant to financial analysts' tasks.

[0030]The illustrative embodiments recognize and take into account that identifying the relevance of the news event to the analytical assessment of a company is a complex process that is often noisy and difficult to manage. For example, certain topics like a management turnover could be breaking news but may not be impactful to the company's rating and thus not highly relevant for analysts. Additionally, for example, if company A engages in an activity in partnership with company B, if the activity were to primarily impact company A and only tangentially impact company B, the news event would not be as relevant for analysts covering compa...

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Abstract

A framework for an automated news recommendation system for financial analysis. The system includes the automated ingestion, relevancy, clustering, and ranking of news events for financial analysts in the capital markets. The framework is adaptable to any form of input news data and can seamlessly integrate with other data used for analysis like financial data.

Description

BACKGROUND INFORMATION1. Field[0001]The present disclosure relates generally to an improved computer system and, in particular, to a news recommendation system for financial analysis.2. Background[0002]Analysts in the financial services industry ingest news from dozens of sources every day. It is critical for them to stay up-to-date on the latest events as at any moment, key material events could occur that impact their analysis on a given company. For example, a company could announce an acquisition or a disruption to their supply chain that would materially impact its business operations. By staying informed on these events in a timely manner, analysts can promptly respond to these changing circumstances and potentially minimize any impact of the company's action on their investment holdings or analysis.[0003]Currently, for each company they analyze, the analysts manually set up news alert subscriptions from a fixed set of sources based on keywords of the company's name. Thus, the...

Claims

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Application Information

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Patent Type & Authority Patents(United States)
IPC IPC(8): G06F16/9535G06F16/2457G06N20/00G06Q40/06G06Q20/12G06Q30/02G06F40/289G06F40/205G06F16/951G06F16/28G06F16/2455G06F40/295G06N3/08G06F16/906G06F16/9038G06F16/9032G06V30/416H04L67/01
CPCG06Q40/06G06F16/24556G06F16/24578G06F16/287G06F16/906G06F16/9038G06F16/90332G06F16/951G06F16/9535G06F40/205G06F40/289G06F40/295G06N3/08G06N20/00G06Q20/127G06Q30/0282G06V30/416H04L67/42G06F16/355G06N20/10G06N3/045G06F18/232G06F18/24133G06F18/24143H04L67/01G06F16/35
Inventor KIM, LISAMA, ZHIQIANGBANG, GRACEWANG, CHONGSINGH, HIMANIKOCIUBA, RUSSELLPOMERVILLE, STEVENLIU, XIAOMO
Owner S&P GLOBAL INC
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